2024
DOI: 10.3390/computers13030083
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A Seamless Deep Learning Approach for Apple Detection, Depth Estimation, and Tracking Using YOLO Models Enhanced by Multi-Head Attention Mechanism

Praveen Kumar Sekharamantry,
Farid Melgani,
Jonni Malacarne
et al.

Abstract: Considering precision agriculture, recent technological developments have sparked the emergence of several new tools that can help to automate the agricultural process. For instance, accurately detecting and counting apples in orchards is essential for maximizing harvests and ensuring effective resource management. However, there are several intrinsic difficulties with traditional techniques for identifying and counting apples in orchards. To identify, recognize, and detect apples, apple target detection algor… Show more

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Cited by 10 publications
(1 citation statement)
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“…To extract detailed information effectively from kale images, we introduce an attention refinement module (ARM) [21,22], as depicted in Figure 6. This module plays a crucial role in improving the model's ability to capture intricate details and semantic context relevant to kale leaf segmentation.…”
Section: Attention Refinement Module (Arm)mentioning
confidence: 99%
“…To extract detailed information effectively from kale images, we introduce an attention refinement module (ARM) [21,22], as depicted in Figure 6. This module plays a crucial role in improving the model's ability to capture intricate details and semantic context relevant to kale leaf segmentation.…”
Section: Attention Refinement Module (Arm)mentioning
confidence: 99%